There must be an elegant way to do this but I have not found it yet. I have a large dataframe that looks something like this:

```
df
Name 0 1 2 3 4
1 apple 2016 W1 NaN NaN NaN NaN
2 orange 2016 W1 2017 W2 NaN NaN NaN
3 banana 2016 W2 2017 W3 NaN NaN NaN
4 pear 2016 W3 2016 W4 2016 W5 NaN NaN
6 melon 2016 W2 2016 W4 2017 W5 2017 W6 2017 W7
```

And I want to melt the data such that there are only two columns `name`

and `week`

. So the result should look like this:

```
df_result
Name week
apple 2016 W1
orange 2016 W1
orange 2017 W2
banana 2016 W2
banana 2017 W3
pear 2016 W3
pear 2016 W4
... etc.
```

What I'm stuck on is how to ignore the NaN values while being sure to not lose any values.

When I do `pd.melt(df, id_vars=['Name'])`

I'm not sure if the outcome is what I want.